English

Protein Structure Tokenization via Geometric Byte Pair Encoding

Quantitative Methods 2026-03-03 v2 Artificial Intelligence

Abstract

Protein structure is central to biological function, and enabling multimodal protein models requires joint reasoning over sequence, structure, and function. A key barrier is the lack of principled protein structure tokenizers (PSTs): existing approaches fix token size or rely on continuous vector codebooks, limiting interpretability, multi-scale control, and transfer across architectures. We introduce GeoBPE, a geometry-grounded PST that transforms continuous, noisy, multi-scale backbone conformations into discrete ``sentences'' of geometry while enforcing global constraints. Analogous to byte-pair encoding, GeoBPE generates a hierarchical vocabulary of geometric primitives by iteratively (i) clustering Geo-Pair occurrences with k-medoids to yield a resolution-controllable vocabulary; (ii) quantizing each Geo-Pair to its closest medoid prototype; and (iii) reducing drift through differentiable inverse kinematics that optimizes boundary glue angles under an SE(3)\mathrm{SE}(3) end-frame loss. GeoBPE offers compression (>>10x reduction in bits-per-residue at similar distortion rate), data efficiency (>>10x less training data), and generalization (maintains test/train distortion ratio of 1.01.11.0-1.1). It is architecture-agnostic: (a) its hierarchical vocabulary provides a strong inductive bias for coarsening residue-level embeddings from large PLMs into motif- and protein-level representations, consistently outperforming leading PSTs across 1212 tasks and 2424 test splits; (b) paired with a transformer, GeoBPE supports unconditional backbone generation via language modeling; and (c) tokens align with CATH functional families and support expert-interpretable case studies, offering functional meaning absent in prior PSTs. Code is available at https://github.com/shiningsunnyday/PT-BPE/.

Keywords

Cite

@article{arxiv.2511.11758,
  title  = {Protein Structure Tokenization via Geometric Byte Pair Encoding},
  author = {Michael Sun and Weize Yuan and Gang Liu and Wojciech Matusik and Marinka Zitnik},
  journal= {arXiv preprint arXiv:2511.11758},
  year   = {2026}
}

Comments

ICLR 2026

R2 v1 2026-07-01T07:38:14.754Z